Though deep learning-based object detection methods have achieved promising results on the conventional datasets, it is still challenging to locate objects from the low-quality images captured in adverse weather conditions. The existing methods either have difficulties in balancing the tasks of image enhancement and object detection, or often ignore the latent information beneficial for detection. To alleviate this problem, we propose a novel Image-Adaptive YOLO (IA-YOLO) framework, where each image can be adaptively enhanced for better detection performance. Specifically, a differentiable image processing (DIP) module is presented to take into account the adverse weather conditions for YOLO detector, whose parameters are predicted by a small convolutional neural net-work (CNN-PP). We learn CNN-PP and YOLOv3 jointly in an end-to-end fashion, which ensures that CNN-PP can learn an appropriate DIP to enhance the image for detection in a weakly supervised manner. Our proposed IA-YOLO approach can adaptively process images in both normal and adverse weather conditions. The experimental results are very encouraging, demonstrating the effectiveness of our proposed IA-YOLO method in both foggy and low-light scenarios.
翻译:尽管在常规数据集方面,深层次的基于学习的天体探测方法已经取得了有希望的成果,但从在恶劣天气条件下捕获的低质量图像中找到物体仍具有挑战性,现有方法要么难以平衡图像增强任务和物体探测任务之间的平衡,要么往往忽视有利于探测的潜在信息。为了缓解这一问题,我们提议了一个新型的图像-成像自动成像YOLO(IA-YOLO)框架(IA-YOLO),其中每个图像都可以适应性地增强,以更好地探测性能。具体地说,提出一个不同的图像处理模块,以考虑到YOLO探测器的不利天气条件,该探测器的参数是由小型神经神经网工作(CNN-PPP)预测的。我们以端到端的方式共同学习CNN-PPP和YOLOv3,这确保CNN-PPP能够学习适当的DIP,以加强在薄弱的监督下探测图像。我们提议的IA-YOLO方法可以在正常和不利天气条件下适应性地处理图像。实验结果非常令人鼓舞,表明我们提议的IA-YOLO方法在大雾和低度两种情况下的有效性。